In an attempt to solve multiobjective optimization problems, many traditional methods scalarize an objective vector into a single objective by a weight vector. In these cases, the obtained solution is highly sensitive to the weight vector used in the scalarization process and demands a user to have knowledge about the underlying problem. Moreover, in solving multiobjective problems, designers may be interested in a set of Pareto‐optimal points, instead of a single point. In this paper, Pareto‐based Continuous Evolutionary Algorithms for Multiobjective Optimization problems having continuous search space are introduced. These algorithms are based on Continuous Evolutionary Algorithms, which were developed by the authors to solve single‐objective optimization problems with a continuous function and continuous search space efficiently. For multiobjective optimization, a progressive reproduction operator and a niche‐formation method for fitness sharing and a storing process for elitism are implemented in the algorithm. The operator and the niche formulation allow the solution set to be distributed widely over the Pareto‐optimal tradeoff surface. Finally, the validity of this method has been demonstrated through some numerical examples.
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1 February 2002
Technical Paper|
February 01 2002
Pareto‐based continuous evolutionary algorithms for multiobjective optimization Available to Purchase
Mun‐Bo Shim;
Mun‐Bo Shim
School of Mech. Engineering, The University of Sungkyunkwan, Kyoungki‐Do, South Korea
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Myung‐Won Suh;
Myung‐Won Suh
School of Mech. Engineering, The University of Sungkyunkwan, Kyoungki‐Do, South Korea
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Tomonari Furukawa;
Tomonari Furukawa
Quantum Engineering and Systems Science, The University of Tokyo, Tokyo, Japan
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Genki Yagawa;
Genki Yagawa
Quantum Engineering and Systems Science, The University of Tokyo, Tokyo, Japan
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Shinobu Yoshimura
Shinobu Yoshimura
Institute of Environmental Studies, The University of Tokyo, Tokyo, Japan
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Publisher: Emerald Publishing
Online ISSN: 1758-7077
Print ISSN: 0264-4401
© MCB UP Limited
2002
Engineering Computations (2002) 19 (1): 22–48.
Citation
Shim M, Suh M, Furukawa T, Yagawa G, Yoshimura S (2002), "Pareto‐based continuous evolutionary algorithms for multiobjective optimization". Engineering Computations, Vol. 19 No. 1 pp. 22–48, doi: https://doi.org/10.1108/02644400210413649
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